噪声水听器数据中事件分类的新方法

F. Sattar, P. Driessen, G. Tzanetakis, W. Page
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引用次数: 4

摘要

本文提出了一种新的水听器数据事件分类方法。该方法对一维水听器数据采用图像处理方法,首先将其转换为对数频谱图图像(倒谱)。然后,通过基于互信息(MI)标准的主导方向图重构来过滤该图像。然后使用边缘跟踪和噪声平滑的组合增强重建倒谱的特征。使用最小二乘支持向量机(LS-SVM)对处理后倒谱进行特征分类。该方法显示,对于来自NEPTUNE Canada项目的嘈杂水听器记录的鲸鱼叫声等罕见事件,事件检测灵敏度超过99%,特异性超过97%,总体准确率超过98%。该方法计算成本相对较低,精度较高,可用于从水听器数据中对各种海洋哺乳动物和人类相关活动进行自动化长期监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new method for classification of events in noisy hydrophone data
In this paper a new method for classifying events in noisy hydrophone data is developed. The method takes an image processing approach to the 1D hydrophone data by first converting it into a log-frequency spectrogram image (cepstrum). This image is then filtered by reconstructing it based on mutual information (MI) criteria of the dominant orientation map. The features of the reconstructed cepstrum are then enhanced using a combination of edge-tracking and noise smoothing. Feature classification on the processed cepstrum is performed using a least-squares support vector machine (LS-SVM). The method showed event detection sensitivity in excess of 99% for rare events such as whale calls from noisy hydrophone recordings from the NEPTUNE Canada project, with in excess of 97% specificity and 98% overall accuracy. With relatively low computational cost and high accuracy, the proposed method is useful for automated long-term monitoring of a wide variety of marine mammals and human related activities from hydrophone data.
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